[R-sig-Geo] Convert data.frame/SpatialPointsDataFrame to raster

Vijay Lulla v|j@y|u||@ @end|ng |rom gm@||@com
Wed Jul 31 22:45:48 CEST 2019


Hmm...I had seen your data and thought that it was just some sample that
you'd shared.  If this is your whole data then I don't know how to create a
raster from just one row that is returned from subsetting the dataframe.

Sorry for the noise.

On Wed, Jul 31, 2019 at 4:16 PM Miluji Sb <milujisb using gmail.com> wrote:

> Hello,
>
> Thank you for your kind reply.  Here is a snapshot of the original data. I
> had pasted it at the bottom of my first email but forgot to mention it.
> Thanks again!
>
> df <- structure(list(lon = c(180, 179.762810919291, 179.523658017568,
> 179.311342656601, 179.067616041778, 178.851382109362, 178.648816406322,
> 178.501097394651, 178.662722495847, 178.860599151485), lat =
> c(-16.1529296875,
> -16.21659020822, -16.266117894201, -16.393550535614, -16.4457378034442,
> -16.561653799838, -16.6533087696649, -16.7741069281329, -16.914110607613,
> -16.9049389730284), nsdec = structure(c(1L, 3L, 4L, 5L, 6L, 7L,
> 8L, 9L, 10L, 2L), .Label = c("1 of 10", "10 of 10", "2 of 10",
> "3 of 10", "4 of 10", "5 of 10", "6 of 10", "7 of 10", "8 of 10",
> "9 of 10"), class = "factor"), TWL_5 = c(2.13810426616849,
> 2.16767864033646,
> 2.16881240361846, 2.20727073247015, 2.27771608519709, 2.3649601141941,
> 2.44210984856767, 2.52466349543977, 2.63982954290745, 2.71828906773926
> ), TWL_50 = c(2.38302354555823, 2.43142793944275, 2.45733044901087,
> 2.53057109758284, 2.61391337469939, 2.71040967066483, 2.82546443373866,
> 2.9709907727849, 3.1785797371187, 3.33227647990861), TWL_95 =
> c(2.63753852023063,
> 2.7080249053612, 2.75483681166049, 2.86893038433795, 2.97758282474101,
> 3.14541928966618, 3.3986143008625, 3.68043269045659, 4.09571655859075,
> 4.57299670034984), year = c(2010, 2020, 2030, 2040, 2050, 2060,
> 2070, 2080, 2090, 2100)), row.names = c(NA, 10L), class = "data.frame")
>
> Sincerely,
>
> Milu
>
> On Wed, Jul 31, 2019 at 9:20 PM Vijay Lulla <vijaylulla using gmail.com> wrote:
>
>> ?`rasterFromXYZ` states that "x and y represent spatial coordinates and
>> must be on a regular grid."  And, it appears to me that you might be losing
>> values by rounding lon/lat values.  The help file further suggests that
>> `rasterize` might be the function you're looking for.  List members will
>> (certainly I will) find it more helpful to propose other solutions if you
>> post a small reproducible example of your original georeferenced dataset so
>> that we get an idea of what data you're using.
>>
>> Sorry, I cannot be of more help.
>>
>> On Wed, Jul 31, 2019 at 10:45 AM Miluji Sb <milujisb using gmail.com> wrote:
>>
>>> Dear all,
>>>
>>> I have georeferenced dataset with multiple variables and years. The data
>>> is
>>> at ~100 km (1° × 1°) spatial resolution. I would like to convert this
>>> into
>>> a raster.
>>>
>>> I have filtered the data for one year and one variable and did the
>>> following;
>>>
>>> try <- subset(df, year==2010)
>>> try <- try[,c(1,2,4)]
>>> try$lon <- round(try$lon)
>>> try$lat <- round(try$lat)
>>> r_imp <- rasterFromXYZ(try)
>>>
>>> Two issues; is it possible to convert the original dataset with the
>>> multiple variables and years to a raster? If not, how can I avoid
>>> rounding
>>> the coordinates? Currently, I get this error "Error in
>>> rasterFromXYZ(try) :
>>> x cell sizes are not regular" without rounding.
>>>
>>> Any help will be greatly appreciated. Thank you!
>>>
>>> Sincerely,
>>>
>>> Shouro
>>>
>>> ## Data
>>> df <- structure(list(lon = c(180, 179.762810919291, 179.523658017568,
>>> 179.311342656601, 179.067616041778, 178.851382109362, 178.648816406322,
>>> 178.501097394651, 178.662722495847, 178.860599151485), lat =
>>> c(-16.1529296875,
>>> -16.21659020822, -16.266117894201, -16.393550535614, -16.4457378034442,
>>> -16.561653799838, -16.6533087696649, -16.7741069281329, -16.914110607613,
>>> -16.9049389730284), nsdec = structure(c(1L, 3L, 4L, 5L, 6L, 7L,
>>> 8L, 9L, 10L, 2L), .Label = c("1 of 10", "10 of 10", "2 of 10",
>>> "3 of 10", "4 of 10", "5 of 10", "6 of 10", "7 of 10", "8 of 10",
>>> "9 of 10"), class = "factor"), TWL_5 = c(2.13810426616849,
>>> 2.16767864033646,
>>> 2.16881240361846, 2.20727073247015, 2.27771608519709, 2.3649601141941,
>>> 2.44210984856767, 2.52466349543977, 2.63982954290745, 2.71828906773926
>>> ), TWL_50 = c(2.38302354555823, 2.43142793944275, 2.45733044901087,
>>> 2.53057109758284, 2.61391337469939, 2.71040967066483, 2.82546443373866,
>>> 2.9709907727849, 3.1785797371187, 3.33227647990861), TWL_95 =
>>> c(2.63753852023063,
>>> 2.7080249053612, 2.75483681166049, 2.86893038433795, 2.97758282474101,
>>> 3.14541928966618, 3.3986143008625, 3.68043269045659, 4.09571655859075,
>>> 4.57299670034984), year = c(2010, 2020, 2030, 2040, 2050, 2060,
>>> 2070, 2080, 2090, 2100)), row.names = c(NA, 10L), class = "data.frame")
>>>
>>>         [[alternative HTML version deleted]]
>>>
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>>>
>>
>>
>>

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